common causes of trust, satisfaction and tam in online shopping
TRANSCRIPT
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COMMON CAUSES OF TRUST, SATISFACTION AND TAM IN
ONLINE SHOPPING: AN INTEGRATED MODEL
Ling-Lang Tang
1*, Hanh Nguyen T.H.
1
1. Graduate School of Management, Yuan Ze University, Taiwan, ROC (CSQ),
Summary
Trust and satisfaction are two stepping stones for success of online business. But the
relationship between these two important concepts is still clouded in confusion. This study
proposes common causes between trust and satisfaction. Trust and satisfaction are studied in a
whole integrated model with technology acceptance model (TAM). How Information quality,
system quality and service quality affecting intention of online customer are also explained in
our framework. We deliver questionnaire through email survey. Most of the respondents are
students from Vietnam and Taiwan. Book e-shopping is the object we select in this study.
The result shows that trust and satisfaction affect the e-shopping behavior significantly.
Keywords
Trust, satisfaction, TAM, service quality, information quality
1. INTRODUCTION
Number online subscriber is increasing. Base on World Stats information, number of
online user has reached more than two billion. Revenue of online market companies are also
increasing. For example Google Inc. their revenue in 2010 is 29,321 million, increases 24%
per year. Online market is a big trend. Based on U.S. Census Bureau, total e-commerce trade
reaches more 140 billion in 2008. Many online customers just surf online web, but they don’t
buy. “According to the investigation of CNNIC in 2004, 90.3 percent of online consumers in
China are willing to continue their online shopping behavior in the future” (CNNIC, 2004,
reported by Yaping Chang). That is very importance for site manager making their surfing
customer have intention to buy. Trust and Satisfaction are two stepping stones for successful
E-commerce relationships (Dan J. Kim 2009). Both Trust and Satisfaction positively
influence Intention to purchase. Intention construct is mentioned in TAM. TAM presents for
Technology Acceptance Model. “A Web site is, in essence, an information technology. As
such, online purchase intentions should be explained in part by the technology acceptance
model, TAM (Davis 1989; Davis et al. 1989). This model is at present a preeminent theory of
technology acceptance in IS research. Numerous empirical tests have shown that TAM is a
parsimonious and robust model of technology acceptance behaviors in a wide variety of IT”
(David Gefen, et all 2003). Tzy-Wen Tang (2005) integrated Trust into TAM. But no person
has integrated satisfaction into TAM in online shopping scenario. Relationship of Trust and
Satisfy is unclear. Sonia San Martin (2011) said that the influence of satisfaction on trust will
remains constant regardless of other factor. Opposite with Sonia, Dan said relationship
Trust-> Satisfaction is significant statistical tested. We think that these two constructs are not
‘causes” each other. There are common causes which both affects to Trust and Satisfaction
simultaneously. This is consistent with Sung-Joon Yoon study. Sung-Joon proposed four
antecedents, but we proposed more factors. Our factors also include three of Sung-Joon
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factors. E-service quality has been discussed in literature, but none of them test the quality
e-service with satisfy, trust, and intention. All papers which discussed about trust, satisfaction,
TAM and intention are neglected. We combined different strands in one integrated framework.
Table 1 Relationship
sources Web
site Quality
Tru
st
Satisfactio
n
TA
M
Inten
tion
Tru
st affects Inte
ntio
n
Satisfactio
n affects In
tentio
n
Tru
st affects Satisfactio
n
Satisfactio
n affects T
rust
Correlatio
n b
etween
Tru
st and
Satisfactio
n
2009 Dan J. Kim, Donal L. Ferrin, H. Raghav Rao hx x x x x x x
2010 Matti Mantymaki, Jari salo hx x x x
2005 Tzy-wen Tang, Wen-hai Chi x x x x
2006 Andreas I. Nicolaou, D. Harrison McKnight hx x x x
2011 Adam Finn hx x
2003 David Gefen, Elena Karahanna, Ketmar W. Straub x x x x
2010 Christy M K Cheung, Matthew K O Lee hx x
2006 Ling-Lanh Tang, Yu-Bin Chiu, Wei-Chen Tsai hx x
2006 Nancy Lankton, D. Harrison MCKnight x x x x x
2002 Sung-Joon Yoon hx x x x x x x
2009 Glen L. Urban, Cinda Amyz, Antonio Lorenzon x x x
2001 Paul Pavlou x x x x
2011 Sonia San Martin, Carmen Camarero and Rebeca San Jose hx x x x
2005 Juhani livari x
2008 Sangeeta Sahney x
2005 A. Parasuramn, Valarie A. Zeithaml, Arvind Malhotra x
2005 Yu-Bin Chiu, Chieh-Peng Lin, Ling-Lang Tang x x
2002 Paul Pavlou, David Gefen x x x x x x
hx: partly of construct have discussed. x: full dimension of construct have discussed.
This paper makes three contributions to literature. First, we integrated Satisfaction and
TAM modification in online shopping context. Second, we explained correlation between
Trust and Satisfaction by e-service quality. Third, we empirical tested e-services quality, trust,
satisfaction, and intention.
2. HYPOTHESIS AND FRAMEWORK
Figure 1 shows research model. In this model, TAM was omitted behavior part.
Measurements of Perceive ease of Use, Perceive usefulness, Intention to Use are different
with those measurement in Fred D. David (2000). TAM is applicable model in many minor
technology fields. TAM in that research rather measure technical than online context. We
measure each constructs by one question only. In our model, Perceive usefulness (PU) and
Perceive Ease to use (PEU) doesn’t directly effect to Intentions to buy. PU and PEU both
influence to attitude (in our model are Trust and Satisfaction). This finding is consistent with
Taylor and Todd (1995). PU belongs to Information quality, PEU belongs to System quality.
2.1 Hypothesis development
Information quality and System quality have been proved positively influencing user
satisfaction (Stacie Petter, DeLone and McLean 2006, Felix B Tan 2011, Christy M. K
Cheung and Matthew K O Lee 2010). Different authors have different ways of measuring
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information quality. Christy M K Cheung study information quality by four aspects: accuracy,
content, format, timeliness. Saneeta Sahney (2008) mentions about extensive product
information. Juhani Livari (2005) used currency, completeness, consistency. Personalization
and Relevance Security are mentioned in DeLone and McLean in 2003.
Hypothesis 1: information quality positively influences satisfaction.
Figure 1 Research Framework
Variety of scales have been used to measure system quality: flexibility, integration,
response time, recover ability, convenience, language (Juhani livari), Ease of use, ease of
learning, system features, sophistication, integration, customization (Sedera et al., 2004)
Hypothesis 2: System quality of website positively influences Satisfaction.
Christy M K Cheung reviewed literature, and make proposition that service quality of
online shopping significant effect on Consumer satisfaction. Literature are based on studies of
Devaraj et al. 2002, Turban and Gehrke 2000, Jarvenpass and Todd 1997, Zeithaml et al. 2002,
Watson et al. 1998.
Hypothesis 3: Web-service quality positively influences Satisfaction
In the empirical research of Khaled S. Hassanein and Milena M. Head (2004), Social
presence (Matti Mantymaki and Jari Salo 2010,) perceived usefulness (belong to information
quality), perceived ease of use (belongs to system quality) positively impact on Trust
(Tzy-Wen Tang, Wen-Hai Chi 2005, David Gegen et al. 2003, ). Information quality
positively influences Trust in the inter-organizational context (Nicolaou and McKnight 2006).
Hypothesis 4: System quality positively influences Trust
Hypothesis 5: Information quality positively influences Trust
Social presence shows positive effect to Trust (Khaled S. Hassanein and Milena M. Head
2004, 2007, Matti Mantymaki, Jari salo 2010). Assurance also effects to Trust (D. Harrison
McKnight, Vivek Choudhury 2006). Web-service quality includes Social presence, assurance
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and other factors which haven’t been tested (effect with trust).
Hypothesis 6: Web-service quality positively influences Trust
Satisfaction positively influences to e-loyalty (Dan J. Kim, et al. 2009). E-loyalty was
measured by intention to buy. Saying other words, Satisfaction positively influences intention
to use (Sergio Roman 2010, Nancy Lankton, D. Harrison MCKnight 2006, Sung-Joon Yoon
2002, Paul Pavlou, David Gefen 2002, Stacie Petter, William DeLone, Ephraim McLean 2006,
William H. DeLone and Ephraim R. McLean 2003). Dan J. Kim (2009) didn’t mention about
Trust influences Intention or not. Tonita Perea y Monsuwe, Benedict G.C. Dellaert and Ko de
Ruyter (2004) proposed that Trust doesn’t directly influence to Intention. Relationship
between Trust and Intention has long been study in variety studies (Matti Mantymaki, Jari
salo 2010, Khaled S. Hassanein, Milena M. Head 2005, Andreas I. Nicolaou, D. Harrison
McKnight 2006, Tzy-wen Tang, Wen-hai Chi 2005, Khaled S. Hassanein, Milena M. Head
2007, D. Harrison McKnight, Vivek Choudhury 2000, 2006, David Gefen, Elena Karahanna,
Ketmar W. Straub 2003, Tonita Perea y Monsuwe, Benedict G.C. Dellaert and Ko de Ruyter
2004, Nancy Lankton, D. Harrison MCKnight 2006, Sung-Joon Yoon 2002, Glen L. Urban,
Cinda Amyz, Antonio Lorenzon 2009, Felix B Tan 2011, Paul Pavlou, David Gefen 2002).
Hypothesis 7: Trust positively influences Intention to Use
Hypothesis 8: Satisfaction positively influences Intention to Use.
3. METHOD
3.1 Subjects
In this study, data is obtained from a student or younger from author list friend in
Facebook, other are delivered through hand in four classes in Yuan Ze University. Totally 625
questionnaires are sent by mail or personal messages. Online informants are young and live
all over the world. Most of them are students. We received 180 online responses, and 70 hand
in responses. There are 11 incomplete questionnaires and 7 uncorrected answers (all answers
are 4 or 7). Incomplete questionnaires and uncorrected answers are excluded from cases.
Finally we have 222 cases for analysis. We first mail questionnaire to thirty graduate students
for pilot tested. The questionnaires are edited and given more explanations for easy to
understand. Each questionnaire includes 43 items.
3.2 Measures
All the constructs in this study are measured using seven-point Likert scales which
modified from the existing literature ( or just utilized the existing scales).
System quality includes: Flexibility (personalization: Adam Finn 2011 using semantic
differential rating scale), Security ( five-point Likert scales by A. Finn 2011), Integration,
response time, recoverability, convenience (Juhani Ivari 2005 using semantic differential, we
changed into seven-point Likert scales, we remove item language from original of Juhani
Ivari scales).
Information quality includes: completeness, precision, consistency, format, currency
(update). These items were discussed in Juhani Ivari 2005. We remove item accuracy. We
think that have same meaning with Precision. We also changed semantic difference meaning
into seven-point Likert scales.
Web-service quality includes: customer support (A. Finn 2011, semantic differential rating
scale, five-point Likert scales, we changed into seven-point Likert scales), returnability (A.
Finn 2011, semantic different meaning was changed into seven-point Likert scale), social
presence (Gefen and Straub 2004, we reduce number of question into three questions),
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assurance (A. Finn 2011, semantic differential rating scales were changed into seven-point
Likert scales).
We utilize measurement of A. Finn (2011) to measure Satisfaction. We changed five-point
scales into seven-point scales. Measurements of Intention to use and Trust are taken from Dan
J. Kim (2009).
3.3 Measurement model
We use SPSS and AMOS 18 for analysis. We first tested reliability using SPSS and then
using AMOS for further analysis. Total Crobach’s Alpha of whole model is .968.
Table 2 Reliability test
Web
-service
quality
Customer support .770
Customer support T18 Access to feedback from other consumers .459 .780
T19 Help available to find what you want .512 .746
T20 This site provides me with tailored information .688 .659
T21 I can use this site to get tailored information .655 .670
Returnability .835
Item-to
tal correlatio
n
Alp
ha if Item
deleted
Cro
nbach
’s α
System quality .863
Sy
stem q
uality
Flexibility .727
Flexibility
(Personalization)
t1 Ability to customize your use of the site .548 .647
T1 Designed to make future transactions easier .408 .647
T3 Site adaptation to your future needs .330 .677
T4 Degree of personalization that is available .305 .691
Integration T5 Please assess the ability of the website functions to coordinate with each other
.578 .782
Response time (speed) T6 Please assess the response and turnaround time of the website .639 .754
Recoverability T7 Please assess the ability of the website to recover from errors .601 .773
Convenience (easy to use) T8 Please assess the easy to use of the website .690 .730
security .664
.757
Security T9 Information security is a concern at this site .517 .545
.405 .887
T10 I’m scared to give this site personal information .208 .757
T11 I trust this site to respect personal information .520 .551
.688 .563
T12 I trust this site to protect visitor’s privacy .591 .501
.704 .541
Information quality .876
info
rmatio
n q
uality
Completeness T13 Please assess the completeness of the information from website? .567 .883
Precision T14 Please assess the precision of the information providing by website .758 .836
Consistency T15 Please assess the consistency of the information from website? .749 .839
format T16 Please assess the format of information from website? .725 .845
Currency (update) T17 Please assess the currency of the website’s information? .739 .841
Web-service quality .915
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Returnability T22 Choice of ways to make returns .691 .778
T23 Acceptance of returns without question .684 .787
T24 Reasonableness of their returns policy .719 .748
Social presence .843
Social presence
T25 There is a sense of human contact in Website .723 .768
T26 There is sense of sociability in website .752 .739
T27 There is a sense of human warmth in website .653 .835
Assurance .842
Assurance
T28 Maintaining a well-known business .693 .792
t29
Selling well-known brands .722 .781
T30 Reputation of the website as a brand .694 .791
T31 Market leadership for its type of website .600 .833
.807
Delivery T32 Delivery time is good .677
T33 My product isn’t broken during the delivery process .677
Satisfaction .907
Satisfaction T34 This website was satisfying to me .801 .875
T35 This website was as good as I expected .805 .873
T36 I feel comfortable surfing this website .817 .870
T37 This website was worth the time I spent on it .737 .898
.853
Intention to Use T38 I’m likely to purchase the products on this website .748 .772
T39 I’m likely to recommend this website to my friends .709 .809
T40 I’m likely to make another purchase from this website if I need the products that I will buy
.716 .803
.877
Trust T41 This website is trustworthy .785 .805
T42 This website vendor gives the impression that it keeps promises and commitments .769 .822
T43 I believe that this website vendor has my best interests in mind .736 .850
Corrected item-total correlation of t10 was too low. We remove t10, and test reliability
again. We can see the higher Alpha of items t9, t11, t12. Using EFA in SPSS, we proposed
remove item t10 because of low factor loading.
Because this model contains so many scales, we try to test for each individual model. The
table below shows the different indexes and criteria for justify a model.
Table 3 Model criteria
Indexes Criteria Result Justify
ML1 ML2 ML3 ML4 ML1 ML2 ML3 ML4
χ2/d.f <3 2.27 2.274 2.935 * Y Y Y *
GFI >0.9 0.93 .892 .839 .813 Y N N N
RMSEA <0.05 is great 0.074 0.07 .091 .080 Good Good Accept Good
0.05<RMSEA<0.08 good
0.08<RMSEA<0.1: accept
NFI >0.9 0.93 .908 .875 .850 Y Y N N
IFI >0.9 0.959 .949 .914 .904 Y Y Y Y
NNFI;TLI >0.9 0.949 .935 .897 .889 Y Y N N
CFI >0.9 0.959 .949 .914 .904 Y Y Y Y
PNFI >0.05 0.744 .736 .738 .737 Y Y Y Y
PGFI >0.05 0.767 .770 .770 .783 Y Y Y Y
AVE >0.5 Y Y Y Y Y
ML1-4: Model 1-4;
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Figure 3 Model of Information quality, satisfaction, intention, and trust: ML1
Table 4 Regression Weights: (Group number 1 - Default model)
Figure 4 (ML2) Intention trust system satisfaction
Estimate S.E. C.R. P Label
trust <--- infor .935 .099 9.423 *** par_14
satisfy <--- infor .941 .101 9.300 *** par_15
intension <--- trust .570 .097 5.907 *** par_12
intension <--- satisfy .450 .089 5.033 *** par_13
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Figure 5 ML3
9
9
Figure 6 whole model test (ML4)
Σ[λi2]Var(X)
AVE = ──────────── ,
Σ[λi2]Var(X)+Σ[Var(ɛi)]
Table 5 correlation and AVE
system Informa service intention trust satisfy
system 0.869036636
Informa .982 0.973932338
service .882 .785 0.970303498
intention .805 .753 .860 0.964279736
trust .919 .772 .881 .899 0.974694963
satisfy .880 .744 .856 .873 .882 0.980015727
3.3 data analyses
3.3.1 Reliability test
Total Alpha of all construct is 0.968. That was very high. Our measurement model has
reliability. The construct security has four scales (t9-t12). T10 has very low total correlation,
and Alpha get much higher if t10 is deleted. Alpha before deleting t10 was 0.664. That was
lower than 0.7. But that value is still acceptable. We run EFA in SPSS, result shows that in
security has 2 factors. T9, t11, t12 belong to one factor, T10 belong to the second factor. We
exclude t10 for further analyses. In Table 2, each scale of Security has two reliability alpha
values. The above is value which t10 had not deleted, the below is value which t10 had
deleted.
3.3.2 Validity test
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With each construct, we run factor analysis in SPSS, all constructs have one factor loading.
We also run CFA in AMOS. All measurement scales show high statistical significant and high
factor loading.
Table 5 shows correlation and AVE of each constructs. We using excel to calculate AVE of
each construct. Before the table is formula of AVE (Fornell and Larker ,1981). All AVE of
different measurements are higher than 0.5 which means our measure have convergent
validity (Robert Ping, 2005).
AVE of Informa, service, intention, trust, and satisfy are higher than their correlation of
different constructs. Which means Informa, service, intention, trust, and satisfy has
discriminant validity (Fornell and Larker, 1981). Only System construct did not satisfy
discriminant validity criteria.
3.3.3 Hypothesis test
We use path model testing in AMOS to test the goodness of the model. Path of Model 1
(ML1) was used to test H 1, and H5. Table 1 shows very good result. H1 and H5 is statistical
significant tested. In this model, all the criteria are satisfied!
In table 1, Path of Model 2 has only value GFI (0.892) is not satisfying the criterion. GFI
is so close to 0.9. All other criteria are satisfied. H2 and H4 is statistical significant tested.
In the same table, Path of Model 3 (ML3) was used to test H3 and H6. GFI, TLI, and NFI
are close to 0.9. Other values are satisfied. H6 and H3 are tested.
The final model and other ML1-ML3 can also prove the relationship between Trust,
Satisfaction and Intention to Use.
4. CONCLUSION AND FUTURE ISSUES
4.1 Conclusions
Youngers are surfing internet every day. Making these people have intention to buy
depend many different aspects of research. This study also contributes to literature of online
shopping, ecommerce in three respects.
First, the study integrates the concepts of satisfaction into TAM, Trust and e-service
quality in context of online shopping. Trust has been integrated into TAM. But no study
integrates satisfaction into TAM.
Secondly, we explained the correlation between Trust and Satisfaction by e-service quality.
Web service quality hasn’t been used (before this study) for explained the relationship
between Trust and Satisfaction.
Thirdly, this is the first attempt to empirical and theoretical integrated e-service quality
with Trust, Satisfaction, TAM, and Intention. E-service quality had been talked as creating
measurement scale, but not in the way of conjunction with other constructs.
4.2 Managerial implications – limitations – future research
We also provide method for managers that improve e-service quality. Information quality
is a critical factor of e-service quality. Information is very important factors influence to
success of online. E-service quality scales can help managers build and compare their current
e-service quality. But fail to prove which factor in e-service quality has more strongly effects
to intension.
Limitation: system quality hasn’t well developed. Discriminant validity of System quality
is low. Utilizing measurement scales of information system into online shopping context
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maybe need more modification. E-service quality hasn’t well measured.
ACKNOWLEDGEMENT
The authors gratefully acknowledge the generous assistance of the members of QMS-H
research group. Thank you my advisor for his kindly guides. Thank you my friends for giving
me his or her time to finish my survey.
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